2022
DOI: 10.1108/ijicc-11-2021-0257
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A multi-preference integrated algorithm (MPIA) for the deep learning-based recommender framework (DLRF)

Abstract: PurposeThe deep learning-based recommender framework (DLRF) is based on an improved long short-term memory (LSTM) structure with additional controllers; thus, it considers contextual information for state transition. It also handles irregularities in the data to enhance performance in generating recommendations while modelling short-term preferences. An algorithm named a multi-preference integrated algorithm (MPIA) is proposed to have dynamic integration of both kinds of user preferences aforementioned. Extens… Show more

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Cited by 4 publications
(2 citation statements)
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“…Firstly, the smoke is extracted by motion detection of the smoke, and then the Faster R-CNN network is used to extract and identify the smoke image features. Deep learning method is superior to the traditional artificial feature extraction (Maditham et al ., 2022). CNN model has a strong ability to extract foreground and background features (Huang, 2021; Rao Kota and Devi Munisamy, 2021), can be used to extract more abstract and deeper features in flame.…”
Section: Introductionmentioning
confidence: 99%
“…Firstly, the smoke is extracted by motion detection of the smoke, and then the Faster R-CNN network is used to extract and identify the smoke image features. Deep learning method is superior to the traditional artificial feature extraction (Maditham et al ., 2022). CNN model has a strong ability to extract foreground and background features (Huang, 2021; Rao Kota and Devi Munisamy, 2021), can be used to extract more abstract and deeper features in flame.…”
Section: Introductionmentioning
confidence: 99%
“…Because the improvement of product and service quality is of great significance to customers, enterprises and society, the research of eWOM oriented to the improvement of product and service quality is favored by many domestic and foreign researchers (Chen et al, 2019;Jiang et al, 2017;Jin et al, 2016b;Qi et al, 2016;Deng et al, 2013). The research focuses on customer preference analysis, customer satisfaction analysis, requirement classification and so on (Bi et al, 2020;Mart ı Bigorra et al, 2019;Maditham et al, 2022). For example, Oh and Yi (2021) provided a new method based on bigram natural language processing (NLP) analysis to evaluate the product feature level and its impact on customer satisfaction in view of the asymmetric impact of customer sentiment on the rating of wireless headset products.…”
Section: Introductionmentioning
confidence: 99%